An Anomaly Detection Approach Based on Bidirectional Temporal Convolutional Network and Multi-Head Attention Mechanism

被引:0
作者
Wang, Rui [1 ]
Li, Jiayao [2 ]
机构
[1] Shanxi Polytech Coll, Taiyuan 030006, Peoples R China
[2] Shanxi Agr Univ, Sch Software, Taigu 030801, Peoples R China
来源
INFORMATION TECHNOLOGY AND CONTROL | 2024年 / 53卷 / 01期
关键词
Anomaly Detection; Bidirectional Temporal Convolutional Network; Multi-head Attention Mechanism; ELU Activation Function; OUTLIER DETECTION;
D O I
10.5755/j01.itc.53.1.34254
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Anomaly detection aims at detecting the data instances that deviate from the majority of data, and it is widely used in various fields for its ability to ensure the quality of the overall data. However, traditional anomaly detection methods face the problems such as low efficiency due to high data complexity and lack of data labels. At the same time, most methods only learn the forward features of time-series data, while lacking attention to the reverse features. For these disadvantages, this paper designs an anomaly detection approach called BiTCN-MHA based on the bidirectional temporal convolutional network (BiTCN) and multi-head attention (MHA) mechanism, which learns the features of anomalous data by capturing the forward and reverse temporal features in the time-series data, as well as solves the problems of feature information overload and neuron "death" by using MHA mechanism and ELU activation function, respectively, thereby quickly and accurately detecting anomalous data. Extensive experiments on six public datasets show that compared with eight state-of-the-arts, the proposed BiTCN-MHA method can improve the precision, recall, AUC and F1-Score by about 6.10%, 10.16%, 4.06% and 8.50%, respectively, especially having better detection performance on small time-series data.
引用
收藏
页码:37 / 52
页数:16
相关论文
共 45 条
[31]   DeepAnT: A Deep Learning Approach for Unsupervised Anomaly Detection in Time Series [J].
Munir, Mohsin ;
Siddiqui, Shoaib Ahmed ;
Dengel, Andreas ;
Ahmed, Sheraz .
IEEE ACCESS, 2019, 7 :1991-2005
[32]   Self-organizing maps for outlier detection [J].
Munoz, A ;
Muruzabal, J .
NEUROCOMPUTING, 1998, 18 (1-3) :33-60
[33]   Deep Learning for Anomaly Detection: A Review [J].
Pang, Guansong ;
Shen, Chunhua ;
Cao, Longbing ;
Van den Hengel, Anton .
ACM COMPUTING SURVEYS, 2021, 54 (02)
[34]   Side-Scan Sonar Analysis Using ROI Analysis and Deep Neural Networks [J].
Polap, Dawid ;
Wawrzyniak, Natalia ;
Wlodarczyk-Sielicka, Marta .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
[35]   Gaussian processes for time-series modelling [J].
Roberts, S. ;
Osborne, M. ;
Ebden, M. ;
Reece, S. ;
Gibson, N. ;
Aigrain, S. .
PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2013, 371 (1984)
[36]   LEARNING REPRESENTATIONS BY BACK-PROPAGATING ERRORS [J].
RUMELHART, DE ;
HINTON, GE ;
WILLIAMS, RJ .
NATURE, 1986, 323 (6088) :533-536
[37]  
Song HA, 2018, AAAI CONF ARTIF INTE, P4091
[38]   Robust Anomaly Detection for Multivariate Time Series through Stochastic Recurrent Neural Network [J].
Su, Ya ;
Zhao, Youjian ;
Niu, Chenhao ;
Liu, Rong ;
Sun, Wei ;
Pei, Dan .
KDD'19: PROCEEDINGS OF THE 25TH ACM SIGKDD INTERNATIONAL CONFERENCCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2019, :2828-2837
[39]   TranAD: Deep Transformer Networks for Anomaly Detection in Multivariate Time Series Data [J].
Tuli, Shreshth ;
Casale, Giuliano ;
Jennings, Nicholas R. .
PROCEEDINGS OF THE VLDB ENDOWMENT, 2022, 15 (06) :1201-1214
[40]  
Wu Y., 2013, ICML 3, P558, DOI DOI 10.5555/3042817.3042999